Enhanced single-diode model parameter extraction method for photovoltaic cells and modules based on integrating genetic algorithm, particle swarm optimization, and comparative objective functions

IF 2.2 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Ali Kareem Abdulrazzaq, György Bognár, Balázs Plesz
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引用次数: 0

Abstract

Accurate modeling of the operational behavior of photovoltaic systems is crucial to optimizing and predicting system performance. One of the well-established and widely used modeling techniques is the single-diode equivalent circuit that delivers a sufficiently accurate description of the electric behavior of both photovoltaic cells and modules under various operational conditions. The single-diode model uses five parameters to reproduce the I-V curve for specific operational conditions. However, these five parameters must be extracted from measured or simulated I-V curves. This paper proposes a novel, accurate, and fast method for extracting the single-diode model’s five parameters from measured I-V curves based on a genetic algorithm combined with particle swarm optimization to find the optimal controlling parameters of the genetic algorithm. This approach results in a significant performance improvement in accuracy and convergence speed. The paper also proposes a concept for determining the optimum number of current–voltage data points in the I-V curve, enabling an optimum trade-off between a sufficiently high accuracy and computational costs. Finally, the effect of different objective function formulations on the result has been investigated by comparing the usage of three different objective functions: the implicit form of the single-diode model, the Lambert W-function-based formulation of the explicit single-diode model, and a system of equations based on least square fitting. From the results, it could be concluded that the implicit formulation of the single-diode model delivered the best results compared to the two other formulations. Performance evaluations showed significantly lower error values than recent literature, with mean percent errors of 0.038%, 0.34%, and 0.87% received for the investigated monocrystalline cell, poly-crystalline module, and amorphous module, respectively. The computational cost was reduced by more than 60% after determining the optimum number of I-V points per curve, which was in the range of 20–30 points for each measured curve.

集成遗传算法、粒子群优化和比较目标函数的光伏电池和组件单二极管模型参数提取方法
准确建模光伏系统的运行行为是优化和预测系统性能的关键。单二极管等效电路是一种成熟且广泛使用的建模技术,它可以提供足够准确的描述光伏电池和组件在各种工作条件下的电学行为。单二极管模型使用五个参数来重现特定操作条件下的I-V曲线。然而,这五个参数必须从测量或模拟的I-V曲线中提取。本文提出了一种基于遗传算法和粒子群优化相结合的方法,从测量的I-V曲线中提取单二极管模型的5个参数,并找到遗传算法的最优控制参数。该方法在精度和收敛速度上有显著的性能提高。本文还提出了确定I-V曲线中电流-电压数据点的最佳数量的概念,从而在足够高的精度和计算成本之间实现最佳权衡。最后,通过比较三种不同目标函数:单二极管模型的隐式形式、基于Lambert w函数的显式单二极管模型的公式和基于最小二乘拟合的方程组,研究了不同目标函数形式对结果的影响。从结果来看,可以得出结论,单二极管模型的隐式公式相比其他两种公式提供了最好的结果。性能评估的误差值明显低于最近的文献,所研究的单晶电池、多晶组件和非晶组件的平均误差分别为0.038%、0.34%和0.87%。在确定了每条曲线的I-V点的最优数量后,计算成本降低了60%以上,每条曲线的I-V点在20-30个范围内。
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来源期刊
Journal of Computational Electronics
Journal of Computational Electronics ENGINEERING, ELECTRICAL & ELECTRONIC-PHYSICS, APPLIED
CiteScore
4.50
自引率
4.80%
发文量
142
审稿时长
>12 weeks
期刊介绍: he Journal of Computational Electronics brings together research on all aspects of modeling and simulation of modern electronics. This includes optical, electronic, mechanical, and quantum mechanical aspects, as well as research on the underlying mathematical algorithms and computational details. The related areas of energy conversion/storage and of molecular and biological systems, in which the thrust is on the charge transport, electronic, mechanical, and optical properties, are also covered. In particular, we encourage manuscripts dealing with device simulation; with optical and optoelectronic systems and photonics; with energy storage (e.g. batteries, fuel cells) and harvesting (e.g. photovoltaic), with simulation of circuits, VLSI layout, logic and architecture (based on, for example, CMOS devices, quantum-cellular automata, QBITs, or single-electron transistors); with electromagnetic simulations (such as microwave electronics and components); or with molecular and biological systems. However, in all these cases, the submitted manuscripts should explicitly address the electronic properties of the relevant systems, materials, or devices and/or present novel contributions to the physical models, computational strategies, or numerical algorithms.
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